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Web Personalization using Web Mining Techniques
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IJCA Proceedings on Emerging Trends in Computer
Science and Information Technology (ETCSIT2012) etcsit1001
© 2012 by IJCA Journal
ETCSIT - Number 1
Year of Publication: 2012
Yogita S. Pagar
Authors:
Vishakha. R. Mote
Rahul S. Bramhane
{bibtex}etcsit1001.bib{/bibtex}
Abstract
Web mining is the application of data mining techniques to extract knowledge from Web. Web
mining has been explored to a vast degree and different techniques have been proposed for a
variety of applications that includes Web Search, Classification and Personalization etc. Most
research on Web mining has been from a 'data-centric' point of view. In this
paper, we highlight the significance of studying the evolving nature of the Web personalization.
Web usage mining is used to discover interesting user navigation patterns and can be applied
to many real-world problems, such as improving Web sites/pages, making additional topic or
product recommendations, user/customer behavior studies, etc. A Web usage mining system
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Web Personalization using Web Mining Techniques
performs five major tasks: i) data gathering, ii) data preparation, iii) navigation pattern discovery,
iv) pattern analysis and visualization, and v) pattern applications. Each task is explained in
detail and its related technologies are introduced. The Web mining research is a converging
research area from several research communities, such as Databases, Information Retrieval
and Artificial Intelligence. In this paper we implement how Web mining techniques can be apply
for the Customization i. e Web personalization.
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Computer Science
Index Terms
Emerging Trends in Technology
Keywords
Usage Mining Navigation Patterns Pattern Analysis Content Mining Structure Mining
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